# How to predict variables based on multiple samples?

The problem

I tried to do some ML models but everytime I had some weird plots and I couldn't understand these scores. I'm relatively new to ML and maybe someone can help me with this data with some example (DecisionTreeClassifier/SVM/RandomForestClassifier/KNN) how to deal with it and interpret.

The dataset

I have two datasets:

1. "seq.csv" with frequency of every aminoacid in specific protein:
``````A,C,D,E,F,G,H,I,K,L,M,N,P,Q,R,S,T,V,W,Y
17,0,6,14,5,11,12,9,19,18,3,2,4,5,4,6,5,9,2,3
17,0,10,8,5,11,1,10,13,16,5,12,3,5,13,6,12,9,3,6
18,0,6,14,6,11,11,9,19,18,3,2,4,5,4,6,5,8,2,3
16,0,11,8,5,11,1,10,13,17,5,12,3,5,13,7,12,9,3,6
``````
1. "secstr.csv" with frequency of every bond of secondary structure in specific protein:
``````H,G,I,B,E,S,T,C,' '
108,12,0,0,0,3,12,0,19
102,3,0,1,14,12,15,0,18
109,9,0,0,0,2,14,0,20
103,3,0,1,12,9,13,0,26
``````

Code example

``````import numpy as np
from sklearn.model_selection import train_test_split

X = np.asarray(seq_df)
Y = np.asarray(sec_str_df['H'])

X_train, X_test, y_train, y_test = train_test_split(X, Y, test_size=0.33, shuffle= True)
X_train.shape, X_test.shape
>>>((67, 20), (33, 20))

##########################

from sklearn.linear_model import LinearRegression

lineReg = LinearRegression()
lineReg.fit(X_train, y_train)
print('Score: ', lineReg.score(X_test, y_test))
print('Weights: ', lineReg.coef_)

plt.plot(lineReg.predict(X_test))
plt.plot(y_test)
plt.show()
>>>Score:  0.6800436491044164
Weights:  [-0.87378736 -0.13286578 -4.03961593  2.71956276 -1.6088727  -1.655681
-3.381233    1.89215565  1.47324114  5.08374842  1.97302355 -2.77426402
-0.92489368 -1.24430955  3.09726346 -0.41345148  0.11391256 -1.95393996
-0.71682087  0.05350237]

##########################

clf = DecisionTreeClassifier(max_depth = 4,
random_state = 0)
clf.fit(X_train, y_train)
>>>DecisionTreeClassifier(ccp_alpha=0.0, class_weight=None, criterion='gini',
max_depth=4, max_features=None, max_leaf_nodes=None,
min_impurity_decrease=0.0, min_impurity_split=None,
min_samples_leaf=1, min_samples_split=2,
min_weight_fraction_leaf=0.0, presort='deprecated',
random_state=0, splitter='best')
``````

The goal

I'm trying to predict likelihood of occurence specific bond in protein based on aminoacid frequency.

• What is your target variable / are your target variables? Is it what you have in secstr.csv? Do the letters in the first csv have the same meaning as in the second? – jottbe Nov 29 '20 at 13:43
• No, they have different meaning. Letters in seq.csv are in some way correlated with letters from secstr.csv. When I have more letters for example 'A', 'M', 'N' in seq.csv maybe they have influence on numbers of letter 'H' in secstr.csv – Sz P Nov 30 '20 at 14:58
• Earlier I had something like in this link: stackoverflow.com/questions/64703484/… – Sz P Nov 30 '20 at 15:04
• Your data looks more like you are looking for a kind of regression, not a kind of classification, right? So for a NN you should not set an activation function in the output layer. Btw. it should not be necessary to build one model per output column. LinearRegression is most likely too simple, so e.g. try a neural network or a tree based regressor (based on a Random Forest Regressor or a Gradient Boosted Tree Regressor) – jottbe Nov 30 '20 at 16:02
• What do you mean saying "So for a NN you should not set an activation function in the output layer"? – Sz P Nov 30 '20 at 16:30